CMOS Device Engineer, Silicon

Google organizes the world's information and makes it universally accessible and useful, combining AI, Software, and Hardware to create helpful experiences.
Hardware
Mid-Level Software Engineer
In-Person
5,000+ Employees
5+ years of experience
AI · Consumer

Description For CMOS Device Engineer, Silicon

Join Google's innovative hardware team developing custom silicon solutions that power the future of Google's direct-to-consumer products. As a CMOS Device Engineer, you'll be part of a diverse team that pushes boundaries and contributes to products used by millions worldwide. The role involves analyzing device and process data, conducting simulations, and working with various teams to optimize product performance.

Google's hardware team combines the best of Google AI, Software, and Hardware to create radically helpful experiences. The team researches, designs, and develops new technologies and hardware to make computing faster, seamless, and more powerful, with the ultimate goal of improving people's lives through technology.

This position requires strong expertise in CMOS technology development, device characterization, and process integration. You'll work with leading foundries, analyze complex data, and contribute to product optimization. The ideal candidate should have excellent analytical skills, experience with statistical analysis tools like JMP, and strong communication abilities.

The role offers the opportunity to work on cutting-edge technology at one of the world's leading tech companies, with access to state-of-the-art facilities and collaboration with expert teams across different domains. You'll be directly involved in shaping the next generation of Google's hardware experiences, focusing on unparalleled performance, efficiency, and integration.

Google provides an inclusive work environment and is committed to equal opportunity employment, welcoming people with disabilities and diverse backgrounds. The company offers comprehensive benefits and supports professional growth in a collaborative, innovation-driven culture.

Last updated 4 days ago

Responsibilities For CMOS Device Engineer, Silicon

  • Analyze the device and process data for test chips and product Silicon, leveraging CMOS technology from leading foundries
  • Conduct transistor and circuit-level simulations for technology node benchmarking and PPA evaluation
  • Coordinate with IP design, power, and test teams on product bring up, yield issue debug and power/performance improvement
  • Analyze foundry data and correlate it with product KPIs for methodology improvement and process and product co-optimization

Requirements For CMOS Device Engineer, Silicon

  • Bachelor's degree in Electrical Engineering, Mechanical Engineering, Materials Science, Chemical Engineering, related degree or equivalent practical experience
  • 5 years of experience in CMOS technology development
  • Experience in CMOS device characterization, process integration and modeling/simulation
  • Statistical analysis experience in JMP

Interested in this job?

Jobs Related To Google CMOS Device Engineer, Silicon

GPU Architect, Silicon

GPU Architect position at Google, focusing on developing custom silicon solutions and GPU cores for Tensor SoC, combining hardware architecture expertise with machine learning applications.

Manufacturing Hardware Technical Lead

Lead the development and implementation of custom test systems for Google's manufacturing operations, managing technical teams and ensuring product quality.

Hardware Engineer, Wafer Process Integration, Quantum AI

Hardware Engineer position at Google Quantum AI, focusing on semiconductor fabrication and process integration for quantum computing devices.

TPU Silicon Validation Engineer

TPU Silicon Validation Engineer position at Google, focusing on ASIC validation, test development, and system debugging for Google's Tensor Processing Units.

Silicon Design Verification Engineer, TPU, Google Cloud

Silicon Design Verification Engineer position at Google, focusing on TPU verification for AI/ML hardware acceleration, requiring expertise in UVM and SystemVerilog.